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GRAPH FEATURE ENGINEERING AND COORDINATE-BASED LEARNING FOR TRANSFERABLE AND ENERGY-EFFICIENT ARTIFICIAL INTELLIGENCE

dc.contributor.authorPaththini Hetti Arachchige, Hansi Kalpana Yasodara, author
dc.contributor.authorJayasumana, Anura, advisor
dc.contributor.authorPasricha, Sudeep, committee member
dc.contributor.authorRay, Indrakshi, committee member
dc.date.accessioned2026-06-08T10:31:46Z
dc.date.issued2026
dc.description.abstractA comprehensive framework for efficient and scalable graph representation learning is presented, emphasizing coordinate-based and explicit structural methods. The research addresses the limitations of Graph Neural Networks (GNNs) in resource-constrained environments, including edge devices and large-scale deployments, by developing lightweight, non-neural alternatives. The first contribution is the Network Feature Embedding (NFE) pipeline, which integrates diffusion-based, positional, and structural descriptors into a unified representation for node classification. The second contribution is the Topology Coordinate-Driven Random Forests (TC-DRF) framework, which combines anchor-based topology coordinates with Random Forest classifiers for graph-level learning and cross-dataset transfer. Extensive evaluations of NFE and TC-DRF on vision, molecular, and social graph benchmarks demonstrate competitive predictive performance while substantially reducing computational overhead, memory footprint, and energy consumption. The proposed frameworks enable zero-shot cross-dataset transfer, maintain robustness under class imbalance, and support practical deployment in Green AI settings. Edge-device experiments, including deployment on Raspberry Pi hardware,confirm sub-millisecond inference latency and ultra-low energy usage. This research challenges the prevailing reliance on deep message-passing architectures for graph learning, demonstrating that explicit structural representations coupled with lightweight models provide viable, interpretable, and resource-efficient alternatives. The findings contribute to the advancement of scalable and sustainable graph learning methodologies and establish a foundation for future work in structural embeddings, dynamic graph analysis, and hybrid structural attributelearning models.
dc.format.mediumborn digital
dc.format.mediummasters theses
dc.identifierPaththiniHettiArachchige_colostate_0053N_19566.pdf
dc.identifier.urihttps://hdl.handle.net/10217/244817
dc.identifier.urihttps://doi.org/10.25675/3.027177
dc.languageEnglish
dc.language.isoeng
dc.publisherColorado State University. Libraries
dc.relation.ispartof2020-
dc.rightsCopyright and other restrictions may apply. User is responsible for compliance with all applicable laws. For information about copyright law, please see https://libguides.colostate.edu/copyright.
dc.subjectGraph Learning
dc.subjectGreen AI
dc.subjectTransfer Learning
dc.subjectGraph Representation Learning
dc.subjectGraph Embedding Neural Networks (GENNs)
dc.subjectTopology-Aware Learning
dc.titleGRAPH FEATURE ENGINEERING AND COORDINATE-BASED LEARNING FOR TRANSFERABLE AND ENERGY-EFFICIENT ARTIFICIAL INTELLIGENCE
dc.typeText
dcterms.rights.dplaThis Item is protected by copyright and/or related rights (https://rightsstatements.org/vocab/InC/1.0/). You are free to use this Item in any way that is permitted by the copyright and related rights legislation that applies to your use. For other uses you need to obtain permission from the rights-holder(s).
thesis.degree.disciplineElectrical and Computer Engineering
thesis.degree.grantorColorado State University
thesis.degree.levelMasters
thesis.degree.nameMaster of Science (M.S.)

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